Department of Electrical, Electronic and Information Engineering "Guglielmo Marconi", University of Bologna, Viale del Risorgimento, 2, 40136 Bologna, Italy.
Health Sciences and Technologies-Interdepartmental Center for Industrial Research, Via Tolara di Sopra, 50, Ozzano dell'Emilia, 40064 Bologna, Italy.
Sensors (Basel). 2022 Mar 10;22(6):2140. doi: 10.3390/s22062140.
Dravet syndrome (DS) is a rare and severe form of genetic epilepsy characterized by cognitive and behavioural impairments and progressive gait deterioration. The characterization of gait parameters in DS needs efficient, non-invasive quantification. The aim of the present study is to apply nonlinear indexes calculated from inertial measurements to describe the dynamics of DS gait. Twenty participants (7 M, age 9-33 years) diagnosed with DS were enrolled. Three wearable inertial measurement units (OPAL, Apdm, Portland, OR, USA; Miniwave, Cometa s.r.l., Italy) were attached to the lower back and ankles and 3D acceleration and angular velocity were acquired while participants walked back and forth along a straight path. Segmental kinematics were acquired by means of stereophotogrammetry (SMART, BTS). Community functioning data were collected using the functional independence measure (FIM). Mean velocity and step width were calculated from stereophotogrammetric data; fundamental frequency, harmonic ratio, recurrence quantification analysis, and multiscale entropy (τ = 1...6) indexes along anteroposterior (AP), mediolateral (ML), and vertical (V) axes were calculated from trunk acceleration. Results were compared to a reference age-matched control group (112 subjects, 6-25 years old). All nonlinear indexes show a disruption of the cyclic pattern of the centre of mass in the sagittal plane, quantitatively supporting the clinical observation of ataxic gait. Indexes in the ML direction were less altered, suggesting the efficacy of the compensatory strategy (widening the base of support). Nonlinear indexes correlated significantly with functional scores (i.e., FIM and speed), confirming their effectiveness in capturing clinically meaningful biomarkers of gait.
德拉维特综合征(DS)是一种罕见且严重的遗传性癫痫形式,其特征是认知和行为障碍以及进行性步态恶化。DS 步态参数的特征需要有效的、非侵入性的定量分析。本研究的目的是应用从惯性测量中计算出的非线性指标来描述 DS 步态的动力学。共纳入 20 名(7 名男性,年龄 9-33 岁)被诊断为 DS 的参与者。将三个可穿戴惯性测量单元(OPAL、Apdm、Portland,OR,美国;Miniwave,Cometa s.r.l.,意大利)分别贴于下背部和脚踝处,当参与者沿直线来回行走时,获取三维加速度和角速度。使用立体摄影测量法(SMART,BTS)获取节段运动学数据。使用功能独立性测量(FIM)收集社区功能数据。从立体摄影测量数据中计算平均速度和步幅;从躯干加速度计算沿前后(AP)、左右(ML)和垂直(V)轴的基频、谐波比、递归定量分析和多尺度熵(τ=1...6)指标。结果与参考年龄匹配的对照组(112 名,6-25 岁)进行比较。所有非线性指标均显示出质心在矢状面周期性模式的破坏,这定量地支持了共济失调步态的临床观察。ML 方向的指标变化较小,表明了代偿策略的有效性(扩大支撑基础)。非线性指标与功能评分(即 FIM 和速度)显著相关,证实了它们在捕获步态有临床意义的生物标志物方面的有效性。